Abstract

Plant sensitivity and its bio-effects on non-thermal weak radio-frequency electromagnetic fields (RF-EMF) identifying key parameters that affect plant sensitivity that can change/unchange by using big data analytics and machine learning concepts are quite significant. Despite its benefits, there is no single study that adequately covers machine learning concept in Bioelectromagnetics domain yet. This study aims to demonstrate the usefulness of Machine Learning algorithms for predicting the possible damages of electromagnetic radiations from mobile phones and base station on plants and consequently, develops a prediction model of plant sensitivity to RF-EMF. We used rawdata of plant exposure from our previous review study (extracted data from 45 peer-reviewed scientific publications published between 1996-2016 with 169 experimental case studies carried out in the scientific literature) that predicts the potential effects of RF-EMF on plants. We also used values of six different attributes or parameters for this study: frequency, specific absorption rate (SAR), power flux density, electric field strength, exposure time and plant type (species). The results demonstrated that the adaptation of machine learning algorithms (classification and clustering) to predict 1) what conditions will RF-EMF exposure to a plant of a given species may not produce an effect; 2) what frequency and electric field strength values are safer; and 3) which plant species are affected by RF-EMF. Moreover, this paper also illustrates the development of optimal attribute selection protocol to identify key parameters that are highly significant when designing the in-vitro practical standardized experimental protocols. Our analysis also illustrates that Random Forest classification algorithm outperforms with highest classification accuracy by 95.26% (0.084 error) with only 4% of fluctuation among algorithm measured. The results clearly show that using K-Means clustering algorithm, demonstrated that the Pea, Mungbean and Duckweeds plants are more sensitive to RF-EMF (p <= 0.0001). The sample size of reported 169 experimental case studies, perhaps low significant in a statistical sense, nonetheless, this analysis still provides useful insight of exploiting Machine Learning in Bioelectromagnetics domain. As a direct outcome of this research, more efficient RF-EMF exposure prediction tools can be developed to improve the quality of epidemiological studies and the long-term experiments using whole organisms.

Highlights

  • Mobile phone technology has exhibited remarkable growth in recent years, heightening the debates on the changes in plant growth due to non-thermal weak radio-frequency electromagnetic fields (RF-EMF)

  • As a direct outcome of this research, more efficient RF-EMF exposure prediction tools can be developed, in order to improve the quality of epidemiological studies and the long-term laboratory experiments using whole organisms

  • This paper has analyzed prediction models and their accuracies in order to identify the best classification algorithm to be used in analyzing data that shows environmental effects from mobile phones and base station radiation on plants

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Summary

Introduction

Mobile phone technology has exhibited remarkable growth in recent years, heightening the debates on the changes in plant growth due to non-thermal weak radio-frequency electromagnetic fields (RF-EMF). Modeling plant sensitivity due to RF-EMF is an important task for both agriculture sector and for epidemiologist, on the other hand, it is a useful tool to assist a better understanding of this phenomenon and eventually advance it. Reported studies showed significant effects on plants that exposed to the radiofrequency radiation or plant sensitivity to the RF-EMF [1]. The fields of machine learning and big data analytics helps to extract high-levels of knowledge from raw data and improve automated tools that can aid the health domain. It is quite challenging for experts to overlook the important details of billions of data, alternatively, use of automated tools to analyze raw data and extract stimulating high-level information is exceptionally important for the decision-makers [3]

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